2021
DOI: 10.1155/2021/6657397
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Identifying Stage II Colorectal Cancer Recurrence Associated Genes by Microarray Meta-Analysis and Building Predictive Models with Machine Learning Algorithms

Abstract: Background. Stage II colorectal cancer patients had heterogeneous prognosis, and patients with recurrent events had poor survival. In this study, we aimed to identify stage II colorectal cancer recurrence associated genes by microarray meta-analysis and build predictive models to stratify patients’ recurrence-free survival. Methods. We searched the GEO database to retrieve eligible microarray datasets. The microarray meta-analysis was used to identify universal recurrence associated genes. Total samples were r… Show more

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Cited by 4 publications
(1 citation statement)
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“…Based on the existing representative literatures [18][19][20][21][22], it is considered that the Cox proportional risk model [23], Cox proportional risk model with penalty [24], random forest model based on machine learning [25], and random survival forest model [26] are popular in survival analysis research. In addition, since previous studies have shown that the lasso method can obtain better prediction results than the forward and the backward stepwise regression methods [27], the lasso method is adopted to establish a proportional risk model with penalty in this paper.…”
Section: Survival Analysismentioning
confidence: 99%
“…Based on the existing representative literatures [18][19][20][21][22], it is considered that the Cox proportional risk model [23], Cox proportional risk model with penalty [24], random forest model based on machine learning [25], and random survival forest model [26] are popular in survival analysis research. In addition, since previous studies have shown that the lasso method can obtain better prediction results than the forward and the backward stepwise regression methods [27], the lasso method is adopted to establish a proportional risk model with penalty in this paper.…”
Section: Survival Analysismentioning
confidence: 99%